HeMIS: Hetero-Modal Image Segmentation
About
We introduce a deep learning image segmentation framework that is extremely robust to missing imaging modalities. Instead of attempting to impute or synthesize missing data, the proposed approach learns, for each modality, an embedding of the input image into a single latent vector space for which arithmetic operations (such as taking the mean) are well defined. Points in that space, which are averaged over modalities available at inference time, can then be further processed to yield the desired segmentation. As such, any combinatorial subset of available modalities can be provided as input, without having to learn a combinatorial number of imputation models. Evaluated on two neurological MRI datasets (brain tumors and MS lesions), the approach yields state-of-the-art segmentation results when provided with all modalities; moreover, its performance degrades remarkably gracefully when modalities are removed, significantly more so than alternative mean-filling or other synthesis approaches.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Enhancing Tumour Segmentation | BraTS 2018 (test) | Dice Score70.24 | 75 | |
| Multimodal Classification | CASIA-SURF (test) | ACER1.97 | 56 | |
| Brain Tumor Segmentation | BraTS 2018 (test) | ET DSC70.24 | 51 | |
| Tumor Core Segmentation | BraTS 2018 | DSC (%)79.48 | 48 | |
| Enhancing Tumor Segmentation | BraTS 2018 | DSC (ET)70.24 | 48 | |
| Whole Tumor Segmentation | BraTS 2018 | DSC (%)84.74 | 48 | |
| Semantic segmentation | NYU v2 (val) | mIoU37.77 | 37 | |
| Segmentation | BraTS 2018 (online evaluation) | Dice (Enhancing tumour)11.78 | 26 | |
| Brain Tumor Segmentation | BRATS 2013 (test) | Dice (Complete)88 | 18 | |
| Whole Tumor Segmentation | BraTS 2018 (test) | DSC Average84.74 | 17 |